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Self-Driving Vehicle
Self-Driving Vehicle
WINLAB Summer Internship 2021
Group Members: Zhuohuan Li, Sandeep Alankar, Anthony Siu, Adas Bankauskas, Malav Majmudar, Abia Mallick, Lohith Bodipati, Rohan Vij
Project Website
https://sa14544.wixsite.com/self-driving-vehicle
Project Objective
The goal of this project is to build a fully-functional self-driving car. The project includes development of ~1/14 scale vehicles for use as a remote self-driving car testing platform, as well as a virtual simulation environment which will model both the physical vehicles and the testbed environment. Robot Operating System (ROS) will be used for both halves of the project, with the simulation running in Gazebo.
There are several objectives for this project:
- Design and implementation of additional sensors for existing vehicles to allow for remote experimentation
- Incorporation of ROS control into existing car software
- Use of AI/machine learning algorithms for self-driving behavior
- Building the actual vehicle at WINLAB and testing its autonomy in a real environment
Due to current operating status at Rutgers, in-person lab work with the physical hardware will have to wait until later in the summer.
Week 1 Activities
- Create ORBIT/COSMOS accounts and become familiar with reserving nodes and performing basic Linux operations
- Read about how to run ROS and Gazebo Simulator on local machines
- Week 1 Presentation
Week 2 Activities
- Work on ROS tutorial with PuTTY
- Reserve nodes on intersection and retrieve/plot data from turtlesim
- Learn about remote graphical access and how to X forward using correct ssh commands
- Create X image for ROS simulations
- Learn how to duplicate PuTTY session with tmux and practice basic tmux shortcuts
- Week 2 Presentation
Week 3 Activities
- Finish ROS tutorial with PuTTY
- Working on Gazebo Simulator tutorial
- Learn how to add new model, build/modify robot, improve model appearance with meshes, etc.
- Create project page on ORBIT wiki, add objective and weekly summaries
- Publish project website with links to weekly presentations
- Week 3 Presentation
Week 4 Activities
- Continue working on Gazebo Simulator tutorial
- Learning how to implement DEMs, create populations of models, build multi-leveled and multi-layered simulation environment, etc.
- Configured Chrome remote desktop to access Gazebo from local machines
- Loaded self driving image onto nodes and learned how to properly save node image
- Week 4 Presentation